基于深度图像人脸识别的3DLBP描述符深度学习

João Baptista Cardia Neto, A. Marana, C. Ferrari, S. Berretti, A. Bimbo
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引用次数: 3

摘要

本文提出了一种新的基于深度图像的人脸识别框架,该框架既有效又高效。该算法主要包括两个阶段:首先,对人脸原始深度数据应用手工制作的底层特征提取器,提取相应的描述符图像(DIs);然后,设计了一个不那么深(浅)的卷积神经网络(SCNN),从深度图像中学习。与直接将深度cnn (DCNN)应用于人脸深度图像相比,该架构显示出两个主要优势:一方面,深度数据能够丰富原始深度数据,强调人脸的相关特征,同时降低采集噪声。这对提高网络的学习能力起到了决定性的作用;另一方面,DIs捕获面部的低级特征,从而扮演SCNN的角色,就像DCNN架构中的第一层一样。通过这种方式,我们设计的SCNN具有更少的层,并且可以更容易和更快地训练。在低分辨率和高分辨率深度人脸数据集上进行的大量实验证实了我们的上述优势,显示出的结果与最先进的技术相当或优于最先进的技术,使用的训练数据、时间和网络的内存占用都要少得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning from 3DLBP Descriptors for Depth Image Based Face Recognition
In this paper, we propose a new framework for face recognition from depth images, which is both effective and efficient. It consists of two main stages: First, a handcrafted low-level feature extractor is applied to the raw depth data of the face, thus extracting the corresponding descriptor images (DIs); Then, a not-so-deep (shallow) convolutional neural network (SCNN) has been designed that learns from the DIs. This architecture showed two main advantages over the direct application of deep-CNN (DCNN) to the depth images of the face: On the one hand, the DIs are capable of enriching the raw depth data, emphasizing relevant traits of the face, while reducing their acquisition noise. This resulted decisive in improving the learning capability of the network; On the other, the DIs capture low-level features of the face, thus playing the role for the SCNN as the first layers do in a DCNN architecture. In this way, the SCNN we have designed has much less layers and can be trained more easily and faster. Extensive experiments on low- and high-resolution depth face datasets confirmed us the above advantages, showing results that are comparable or superior to the state-of-the-art, using by far less training data, time, and memory occupancy of the network.
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